Data Mining INTERNSHIP IN TRAINING
DLK Career Development Centre offers a way for the students to work with live application by offering a internship program. We will be encouraging the students to work with Real time projects.
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- Java Course at DLK
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About Data Mining Internship Training
DLK Career Development Center holds out top fine Data Mining Internship in Chennai with an exceedingly handy blend of talented educators, remarkable and smooth-read Internship materials, and top notch contemplating surroundings that really hold our Data Mining Internship stage inside the apex tutoring’s rack. Our Data Mining Internship enables hypothetical norms to be reinforced with colossal hands-on periods. Our Data Mining Internship enables you to offer both standard and custom courses with a view to oversee you from being a learner to an App-Maker (ongoing utility change)
What You'll Study
Data Mining Internship will acquaint understudies with the essentials of the Data Mining and also fundamental themes for Mining of Frequent Patterns, Mining of Associations, Mining of Correlations, Mining of Clusters. The Data Mining Internship will use for dataset, Decision Making and Increase Your Logical Thinking. We will likewise assemble some Real time Applications.
- Introduction (History of Data Mining)
- Data Mining Overview
- Data Mining tasks
- Data Mining Evaluation
- Data Mining Terminology
- Project Work
Our Curriculam
Section 1: Introduction (History Of Data Mining)
There is a colossal measure of information accessible in the Information Industry. This information is of no utilization until it is changed over into helpful data. It is important to dissect this colossal measure of information and concentrate valuable data from it. Extraction of data is not by any means the only procedure we have to perform; information mining likewise includes different procedures, for example, Data Cleaning, Data Integration, Data Transformation, Data Mining, Pattern Evaluation and Data Presentation. When every one of these procedures are over, we would have the capacity to utilize this data in numerous applications, for example, Fraud Detection, Market Analysis, Production Control, Science Exploration, and so forth.
Data Mining is the process of analyzing data from different perspectives to discover relationships among separate data items. Data mining software is one of several different ways to analyze data and can be used for several different reasons. It can be used to cut costs, increase revenue or for both.
Class/Concept Description
Mining of Frequent Patterns
Mining of Associations
Mining of Correlations
Section 2: Data Mining Issues
- Mining Methodology And User Interaction
- Performance Issues
- Diverse Data Types Issues
Section 3: Data Mining Evaluation
- Data Warehouse
- Update-Driven Approach
- Query-Driven Approach
Section 4: Data Warehousing (OLAP) To Data Mining (OLAM)
- Importance Of OLAM
- Decision Tree Induction
Section 5: Project Work
- Data Mining - Classification & Prediction
- Data Mining - Rule Based Classification
Frequently Asked Questions
Group of similar objects that differ significantly from other objects
Pruning is a technique in machine learning that reduces the size of decision trees by removing sections of the tree that provide little power to classify instances.
Data Mining Decision Tree Induction. A decision tree is a structure that includes a root node, branches, and leaf nodes. Each internal node denotes a test on an attribute, each branch denotes the outcome of a test, and each leaf node holds a class label. The topmost node in the tree is the root node.
Models in Data mining help the different algorithms in decision making or pattern matching. The second stage of data mining involves considering various models and choosing the best one based on their predictive performance.
A data mining extension can be used to slice the data the source cube in the order as discovered by data mining. When a cube is mined the case table is a dimension.
Data mining extension is based on the syntax of SQL. It is based on relational concepts and mainly used to create and manage the data mining models. DMX comprises of two types of statements: Data definition and Data manipulation. Data definition is used to define or create new models, structures.